Studies of FCC-ee Single Bunch Instabilities with an Updated Impedance Model
IPAC23 PROCEEDINGS(2024)
Univ Roma La Sapienza
Abstract
The design of the FCC-ee collider is ongoing with the goal of optimizing beam parameters and developing various accelerator systems. As a result, the modelling of coupling impedance is continuously evolving to take into account the design of the collider vacuum chamber and hardware components. Concurrently, estimates of collective effects and instabilities are being continually updated and refined. This paper presents the current FCC-ee impedance model and reports the findings of the single-bunch instability studies. Additionally, some potential mitigation techniques for these instabilities are discussed.
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Accelerator Design
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